Diverse Deep Matrix Factorization with Hypergraph Regularization for Multi-View Data Representation

Deep matrix factorization (DMF) has been demon-strated to be a powerful tool to take in the complex hierarchical information of multi-view data (MDR). However, existing multi-view DMF methods mainly explore the consistency of multi-view data, while neglecting the diversity among different views as w...

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Veröffentlicht in:IEEE/CAA journal of automatica sinica 2023-11, Vol.10 (11), p.2154-2167
Hauptverfasser: Huang, Haonan, Zhou, Guoxu, Liang, Naiyao, Zhao, Qibin, Xie, Shengli
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Sprache:eng
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Zusammenfassung:Deep matrix factorization (DMF) has been demon-strated to be a powerful tool to take in the complex hierarchical information of multi-view data (MDR). However, existing multi-view DMF methods mainly explore the consistency of multi-view data, while neglecting the diversity among different views as well as the high-order relationships of data, resulting in the loss of valuable complementary information. In this paper, we design a hypergraph regularized diverse deep matrix factorization (HDDMF) model for multi-view data representation, to jointly utilize multi-view diversity and a high-order manifold in a multi-layer factorization framework. A novel diversity enhancement term is designed to exploit the structural complementarity between different views of data. Hypergraph regularization is utilized to preserve the high-order geometry structure of data in each view. An efficient iterative optimization algorithm is developed to solve the proposed model with theoretical convergence analysis. Experimental results on five real-world data sets demonstrate that the proposed method significantly outperforms state-of-the-art multi-view learning approaches.
ISSN:2329-9266
2329-9274
DOI:10.1109/JAS.2022.105980